Muscles in Time: Learning to Understand Human Motion by Simulating Muscle Activations
Exploring the intricate dynamics between muscular and skeletal structures is pivotal for understanding human motion. This domain presents substantial challenges, primarily attributed to the intensive resources required for acquiring ground truth muscle activation data, resulting in a scarcity of dat...
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Zusammenfassung: | Exploring the intricate dynamics between muscular and skeletal structures is
pivotal for understanding human motion. This domain presents substantial
challenges, primarily attributed to the intensive resources required for
acquiring ground truth muscle activation data, resulting in a scarcity of
datasets. In this work, we address this issue by establishing Muscles in Time
(MinT), a large-scale synthetic muscle activation dataset. For the creation of
MinT, we enriched existing motion capture datasets by incorporating muscle
activation simulations derived from biomechanical human body models using the
OpenSim platform, a common approach in biomechanics and human motion research.
Starting from simple pose sequences, our pipeline enables us to extract
detailed information about the timing of muscle activations within the human
musculoskeletal system. Muscles in Time contains over nine hours of simulation
data covering 227 subjects and 402 simulated muscle strands. We demonstrate the
utility of this dataset by presenting results on neural network-based muscle
activation estimation from human pose sequences with two different
sequence-to-sequence architectures. Data and code are provided under
https://simplexsigil.github.io/mint. |
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DOI: | 10.48550/arxiv.2411.00128 |